#!/usr/bin/python
# -*- coding: latin1 -*-
#
# Author: vvlachoudis@gmail.com
# Date: 20-Oct-2015

from __future__ import absolute_import
import sys
import bmath


#===============================================================================
# Cardinal cubic spline class
#===============================================================================
class CardinalSpline:
	def __init__(self, A=0.5):
		# The default matrix is the Catmull-Rom splin
		# which is equal to Cardinal matrix
		# for A = 0.5
		#
		# Note: Vasilis
		#	The A parameter should be the fraction in t where
		#	the second derivative is zero
		self.setMatrix(A)

	#-----------------------------------------------------------------------
	# Set the matrix according to Cardinal
	#-----------------------------------------------------------------------
	def setMatrix(self, A=0.5):
		self.M = []
		self.M.append([  -A,  2.-A,    A-2.,   A ])
		self.M.append([2.*A,  A-3., 3.-2.*A,  -A ])
		self.M.append([  -A,    0.,       A,   0.])
		self.M.append([  0.,    1.,       0,   0.])

	#-----------------------------------------------------------------------
	# Evaluate Cardinal spline at position t
	# @param P	  list or tuple with 4 points y positions
	# @param t [0..1] fraction of interval from points 1..2
	# @param k	  index of starting 4 elements in P
	# @return spline evaluation
	#-----------------------------------------------------------------------
	def __call__(self, P, t, k=1):
		T = [t*t*t, t*t, t, 1.0]
		R = [0.0]*4
		for i in range(4):
			for j in range(4):
				R[i] += T[j] * self.M[j][i]
		y = 0.0
		for i in range(4):
			y += R[i]*P[k+i-1]

		return y

	#-----------------------------------------------------------------------
	# Return the coefficients of a 3rd degree polynomial
	#     f(x) = a t^3 + b t^2 + c t + d
	# @return [a, b, c, d]
	#-----------------------------------------------------------------------
	def coefficients(self, P, k=1):
		C = [0.0]*4
		for i in range(4):
			for j in range(4):
				C[i] += self.M[i][j] * P[k+j-1]
		return C

	#-----------------------------------------------------------------------
	# Evaluate the value of the spline using the coefficients
	#-----------------------------------------------------------------------
	def evaluate(self, C, t):
		return ((C[0]*t + C[1])*t + C[2])*t + C[3]


#===============================================================================
# Cubic spline ensuring that the first and second derivative are continuous
# adapted from Penelope Manual Appending B.1
# It requires all the points (xi,yi) and the assumption on how to deal
# with the second derviative on the extremeties
# Option 1: assume zero as second derivative on both ends
# Option 2: assume the same as the next or previous one
#===============================================================================
class CubicSpline:
	def __init__(self, X, Y):
		self.X = X
		self.Y = Y
		self.n = len(X)

		# Option #1
		s1 = 0.0	# zero based = s0
		sN = 0.0	# zero based = sN-1

		# Construct the tri-diagonal matrix
		A = []
		B = [0.0] * (self.n-2)
		for i in range(self.n-2):
			A.append([0.0] * (self.n-2))

		for i in range(1,self.n-1):
			hi = self.h(i)
			Hi = 2.0*(self.h(i-1) + hi)
			j = i-1
			A[j][j] = Hi
			if i+1<self.n-1:
				A[j][j+1] = A[j+1][j] = hi

			if i==1:
				B[j] = 6.*(self.d(i) - self.d(j)) - hi*s1
			elif i<self.n-2:
				B[j] = 6.*(self.d(i) - self.d(j))
			else:
				B[j] = 6.*(self.d(i) - self.d(j)) - hi*sN

#		from pprint import pprint
#		print "=========== A ============="
#		pprint(A)
#		print "=========== B ============="
#		pprint(B)

		# Solve by gauss elimination
#		AA = bmath.Matrix(A)
#		BB = []
#		for b in B: BB.append([b])
#		BB = bmath.Matrix(BB)
#		print AA
#		print BB
#		AA.inv()
#		print AA*BB
		self.s = bmath.gauss(A,B)
		self.s.insert(0,s1)
		self.s.append(sN)
#		print ">> s <<"
#		pprint(self.s)

	#-----------------------------------------------------------------------
	def h(self, i):
		return self.X[i+1] - self.X[i]

	#-----------------------------------------------------------------------
	def d(self, i):
		return (self.Y[i+1] - self.Y[i]) / (self.X[i+1] - self.X[i])

	#-----------------------------------------------------------------------
	def coefficients(self, i):
		"""return coefficients of cubic spline for interval i a*x**3+b*x**2+c*x+d"""
		hi  = self.h(i)
		si  = self.s[i]
		si1 = self.s[i+1]
		xi  = self.X[i]
		xi1 = self.X[i+1]
		fi  = self.Y[i]
		fi1 = self.Y[i+1]

		a = 1./(6.*hi)*(si*xi1**3 - si1*xi**3 + 6.*(fi*xi1 - fi1*xi)) + hi/6.*(si1*xi - si*xi1)
		b = 1./(2.*hi)*(si1*xi**2 - si*xi1**2 + 2*(fi1 - fi)) + hi/6.*(si - si1)
		c = 1./(2.*hi)*(si*xi1 - si1*xi)
		d = 1./(6.*hi)*(si1-si)

		return [d,c,b,a]

	#-----------------------------------------------------------------------
	def __call__(self, i, x):
		# FIXME should interpolate to find the interval
		C = self.coefficients(i)
		return ((C[0]*x + C[1])*x + C[2])*x + C[3]

	#-----------------------------------------------------------------------
	# @return evaluation of cubic spline at x using coefficients C
	#-----------------------------------------------------------------------
	def evaluate(self, C, x):
		return ((C[0]*x + C[1])*x + C[2])*x + C[3]

	#-----------------------------------------------------------------------
	# Return evaluated derivative at x using coefficients C
	#-----------------------------------------------------------------------
	def derivative(self, C, x):
		a = 3.0*C[0]			# derivative coefficients
		b = 2.0*C[1]			# ... for sampling with rejection
		c =     C[2]
		return (3.0*C[0]*x + 2.0*C[1])*x + C[2]


# ------------------------------------------------------------------------------
# Convert a B-spline to polyline with a fixed number of segments
#
# FIXME to become adaptive
# ------------------------------------------------------------------------------
def spline2Polyline(xyz, degree, closed, segments, knots):
	# Check if last point coincide with the first one
	if (bmath.Vector(xyz[0])-bmath.Vector(xyz[-1])).length2() < 1e-10:
		# it is already closed, treat it as open
		closed = False
		# FIXME we should verify if it is periodic,.... but...
		#       I am not sure :)

	if closed:
		xyz.extend(xyz[:degree])
		knots = None
	else:
		# make base-1
		knots.insert(0, 0)

	npts = len(xyz)

	if degree<1 or degree>3:
		#print "invalid degree"
		return None,None,None

	# order:
	k = degree+1

	if npts < k:
		#print "not enough control points"
		return None,None,None

	# resolution:
	nseg = segments * npts

	# WARNING: base 1
	b = [0.0]*(npts*3+1)		# polygon points
	h = [1.0]*(npts+1)		# set all homogeneous weighting factors to 1.0
	p = [0.0]*(nseg*3+1)		# returned curved points

	i = 1
	for pt in xyz:
		b[i]   = pt[0]
		b[i+1] = pt[1]
		b[i+2] = pt[2]
		i +=3

	#if periodic:
	if closed:
		_rbsplinu(npts, k, nseg, b, h, p, knots)
	else:
		_rbspline(npts, k, nseg, b, h, p, knots)

	x = []
	y = []
	z = []
	for i in range(1,3*nseg+1,3):
		x.append(p[i])
		y.append(p[i+1])
		z.append(p[i+2])

#	for i,xyz in enumerate(zip(x,y,z)):
#		print i,xyz

	return x,y,z


# ------------------------------------------------------------------------------
# Subroutine to generate a B-spline open knot vector with multiplicity
# equal to the order at the ends.
#    c            = order of the basis function
#    n            = the number of defining polygon vertices
#    n+2          = index of x[] for the first occurence of the maximum knot vector value
#    n+order      = maximum value of the knot vector -- $n + c$
#    x[]          = array containing the knot vector
# ------------------------------------------------------------------------------
def _knot(n, order):
	x = [0.0]*(n+order+1)
	for i in range(2, n+order+1):
		if i>order and i<n+2:
			x[i] = x[i-1] + 1.0
		else:
			x[i] = x[i-1]
	return x


# ------------------------------------------------------------------------------
# Subroutine to generate a B-spline uniform (periodic) knot vector.
#
# order        = order of the basis function
# n            = the number of defining polygon vertices
# n+order      = maximum value of the knot vector -- $n + order$
# x[]          = array containing the knot vector
# ------------------------------------------------------------------------------
def _knotu(n, order):
	x = [0]*(n+order+1)
	for i in range(2, n+order+1):
		x[i] = float(i-1)
	return x


# ------------------------------------------------------------------------------
# Subroutine to generate rational B-spline basis functions--open knot vector

# C code for An Introduction to NURBS
# by David F. Rogers. Copyright (C) 2000 David F. Rogers,
# All rights reserved.

# Name: rbasis
# Subroutines called: none
# Book reference: Chapter 4, Sec. 4. , p 296

#   c        = order of the B-spline basis function
#   d        = first term of the basis function recursion relation
#   e        = second term of the basis function recursion relation
#   h[]      = array containing the homogeneous weights
#   npts     = number of defining polygon vertices
#   nplusc   = constant -- npts + c -- maximum number of knot values
#   r[]      = array containing the rational basis functions
#              r[1] contains the basis function associated with B1 etc.
#   t        = parameter value
#   temp[]   = temporary array
#   x[]      = knot vector
# ------------------------------------------------------------------------------
def _rbasis(c, t, npts, x, h, r):
	nplusc = npts + c
	temp = [0.0]*(nplusc+1)

	# calculate the first order non-rational basis functions n[i]
	for i in range(1, nplusc):
		if x[i] <= t < x[i+1]:
			temp[i] = 1.0
		else:
			temp[i] = 0.0

	# calculate the higher order non-rational basis functions
	for k in range(2,c+1):
		for i in range(1,nplusc-k+1):
			# if the lower order basis function is zero skip the calculation
			if temp[i] != 0.0:
				d = ((t-x[i])*temp[i])/(x[i+k-1]-x[i])
			else:
				d = 0.0

			# if the lower order basis function is zero skip the calculation
			if temp[i+1] != 0.0:
				e = ((x[i+k]-t)*temp[i+1])/(x[i+k]-x[i+1])
			else:
				e = 0.0
			temp[i] = d + e

	# pick up last point
	if t >= x[nplusc]:
		temp[npts] = 1.0

	# calculate sum for denominator of rational basis functions
	s = 0.0
	for i in range(1,npts+1):
		s += temp[i]*h[i]

	# form rational basis functions and put in r vector
	for i in range(1, npts+1):
		if s != 0.0:
			r[i] = (temp[i]*h[i])/s
		else:
			r[i] = 0


# ------------------------------------------------------------------------------
# Generates a rational B-spline curve using a uniform open knot vector.
#
# C code for An Introduction to NURBS
# by David F. Rogers. Copyright (C) 2000 David F. Rogers,
# All rights reserved.
#
# Name: rbspline.c
# Subroutines called: _knot, rbasis
# Book reference: Chapter 4, Alg. p. 297
#
#    b           = array containing the defining polygon vertices
#                  b[1] contains the x-component of the vertex
#                  b[2] contains the y-component of the vertex
#                  b[3] contains the z-component of the vertex
#    h           = array containing the homogeneous weighting factors
#    k           = order of the B-spline basis function
#    nbasis      = array containing the basis functions for a single value of t
#    nplusc      = number of knot values
#    npts        = number of defining polygon vertices
#    p[,]        = array containing the curve points
#                  p[1] contains the x-component of the point
#                  p[2] contains the y-component of the point
#                  p[3] contains the z-component of the point
#    p1          = number of points to be calculated on the curve
#    t           = parameter value 0 <= t <= npts - k + 1
#    x[]         = array containing the knot vector
# ------------------------------------------------------------------------------
def _rbspline(npts, k, p1, b, h, p, x):
	nplusc = npts + k
	nbasis = [0.0]*(npts+1)		# zero and re-dimension the basis array

	# generate the uniform open knot vector
	if x is None or len(x) != nplusc+1:
		x = _knot(npts, k)
	icount = 0
	# calculate the points on the rational B-spline curve
	t = 0
	step = float(x[nplusc])/float(p1-1)
	for i1 in range(1, p1+1):
		if x[nplusc] - t < 5e-6:
			t = x[nplusc]
		# generate the basis function for this value of t
		nbasis = [0.0]*(npts+1)	# zero and re-dimension the knot vector and the basis array
		_rbasis(k, t, npts, x, h, nbasis)
		# generate a point on the curve
		for j in range(1, 4):
			jcount = j
			p[icount+j] = 0.0
			# Do local matrix multiplication
			for i in range(1, npts+1):
				p[icount+j] +=  nbasis[i]*b[jcount]
				jcount += 3
		icount += 3
		t += step


# ------------------------------------------------------------------------------
# Subroutine to generate a rational B-spline curve using an uniform periodic knot vector
#
# C code for An Introduction to NURBS
# by David F. Rogers. Copyright (C) 2000 David F. Rogers,
# All rights reserved.
#
# Name: rbsplinu.c
# Subroutines called: _knotu, _rbasis
# Book reference: Chapter 4, Alg. p. 298
#
#   b[]         = array containing the defining polygon vertices
#                 b[1] contains the x-component of the vertex
#                 b[2] contains the y-component of the vertex
#                 b[3] contains the z-component of the vertex
#   h[]         = array containing the homogeneous weighting factors
#   k           = order of the B-spline basis function
#   nbasis      = array containing the basis functions for a single value of t
#   nplusc      = number of knot values
#   npts        = number of defining polygon vertices
#   p[,]        = array containing the curve points
#                 p[1] contains the x-component of the point
#                 p[2] contains the y-component of the point
#                 p[3] contains the z-component of the point
#   p1          = number of points to be calculated on the curve
#   t           = parameter value 0 <= t <= npts - k + 1
#   x[]         = array containing the knot vector
# ------------------------------------------------------------------------------
def _rbsplinu(npts, k, p1, b, h, p, x=None):
	nplusc = npts + k
	nbasis = [0.0]*(npts+1)		# zero and re-dimension the basis array
	# generate the uniform periodic knot vector
	if x is None or len(x) != nplusc+1:
		# zero and re dimension the knot vector and the basis array
		x = _knotu(npts, k)
	icount = 0
	# calculate the points on the rational B-spline curve
	t = k-1
	step = (float(npts)-(k-1))/float(p1-1)
	for i1 in range(1, p1+1):
		if x[nplusc] - t < 5e-6:
			t = x[nplusc]
		# generate the basis function for this value of t
		nbasis = [0.0]*(npts+1)
		_rbasis(k, t, npts, x, h, nbasis)
		# generate a point on the curve
		for j in range(1,4):
			jcount = j
			p[icount+j] = 0.0
			#  Do local matrix multiplication
			for i in range(1,npts+1):
				p[icount+j] += nbasis[i]*b[jcount]
				jcount += 3
		icount += 3
		t += step

# =============================================================================
if __name__ == "__main__":
	SPLINE_SEGMENTS = 20
	from .dxf import DXF
#	from dxfwrite.algebra import CubicSpline, CubicBezierCurve
	dxf = DXF(sys.argv[1],"r")
	dxf.readFile()
	dxf.close()
	for name,layer in dxf.layers.items():
		for entity in layer.entities:
			if entity.type == "SPLINE":
				xy = zip(entity[10], entity[20])
				x,y = spline2Polyline(xy, int(entity[71]), True, SPLINE_SEGMENTS)
				#for a,b in zip(x,y):
				#	print a,b
